golang-samber-hot

von samber

In-Memory-Caching in Golang mit samber/hot – Verdrängungsalgorithmen (LRU, LFU, TinyLFU, W-TinyLFU, S3FIFO, ARC, TwoQueue, SIEVE, FIFO), TTL, Cache-Loader, Sharding, Stale-While-Revalidate, Missing-Key-Caching und Prometheus-Metriken. Anwenden bei Nutzung oder Übernahme von samber/hot, wenn die Codebasis github.com/samber/hot importiert oder wenn das Projekt wiederholt dieselben Ressourcen mittlerer bis niedriger Kardinalität mit hoher Frequenz lädt und Latenz oder Backend-Druck reduzieren muss.

npx skills add https://github.com/samber/cc-skills-golang --skill golang-samber-hot

Persona: You are a Go engineer who treats caching as a system design decision. You choose eviction algorithms based on measured access patterns, size caches from working-set data, and always plan for expiration, loader failures, and monitoring.

Using samber/hot for In-Memory Caching in Go

Generic, type-safe in-memory caching library for Go 1.22+ with 9 eviction algorithms, TTL, loader chains with singleflight deduplication, sharding, stale-while-revalidate, and Prometheus metrics.

Official Resources:

This skill is not exhaustive. Please refer to library documentation and code examples for more information. Context7 can help as a discoverability platform.

go get -u github.com/samber/hot

Algorithm Selection

Pick based on your access pattern — the wrong algorithm wastes memory or tanks hit rate.

AlgorithmConstantBest forAvoid when
W-TinyLFUhot.WTinyLFUGeneral-purpose, mixed workloads (default)You need simplicity for debugging
LRUhot.LRURecency-dominated (sessions, recent queries)Frequency matters (scan pollution evicts hot items)
LFUhot.LFUFrequency-dominated (popular products, DNS)Access patterns shift (stale popular items never evict)
TinyLFUhot.TinyLFURead-heavy with frequency biasWrite-heavy (admission filter overhead)
S3FIFOhot.S3FIFOHigh throughput, scan-resistantSmall caches (<1000 items)
ARChot.ARCSelf-tuning, unknown patternsMemory-constrained (2x tracking overhead)
TwoQueuehot.TwoQueueMixed with hot/cold splitTuning complexity is unacceptable
SIEVEhot.SIEVESimple scan-resistant LRU alternativeHighly skewed access patterns
FIFOhot.FIFOSimple, predictable eviction orderHit rate matters (no frequency/recency awareness)

Decision shortcut: Start with hot.WTinyLFU. Switch only when profiling shows the miss rate is too high for your SLO.

For detailed algorithm comparison, benchmarks, and a decision tree, see Algorithm Guide.

Core Usage

Basic Cache with TTL

import "github.com/samber/hot"

cache := hot.NewHotCache[string, *User](hot.WTinyLFU, 10_000).
    WithTTL(5 * time.Minute).
    WithJanitor().
    Build()
defer cache.StopJanitor()

cache.Set("user:123", user)
cache.SetWithTTL("session:abc", session, 30*time.Minute)

value, found, err := cache.Get("user:123")

Loader Pattern (Read-Through)

Loaders fetch missing keys automatically with singleflight deduplication — concurrent Get() calls for the same missing key share one loader invocation:

cache := hot.NewHotCache[int, *User](hot.WTinyLFU, 10_000).
    WithTTL(5 * time.Minute).
    WithLoaders(func(ids []int) (map[int]*User, error) {
        return db.GetUsersByIDs(ctx, ids) // batch query
    }).
    WithJanitor().
    Build()
defer cache.StopJanitor()

user, found, err := cache.Get(123) // triggers loader on miss

Capacity Sizing

Before setting the cache capacity, estimate how many items fit in the memory budget:

  1. Estimate single-item size — estimate size of the struct, add the size of heap-allocated fields (slices, maps, strings). Include the key size. A rough per-entry overhead of ~100 bytes covers internal bookkeeping (pointers, expiry timestamps, algorithm metadata).
  2. Ask the developer how much memory is dedicated to this cache in production (e.g., 256 MB, 1 GB). This depends on the service's total memory and what else shares the process.
  3. Compute capacitycapacity = memoryBudget / estimatedItemSize. Round down to leave headroom.
Example: *User struct ~500 bytes + string key ~50 bytes + overhead ~100 bytes = ~650 bytes/entry
         256 MB budget → 256_000_000 / 650 ≈ 393,000 items

If the item size is unknown, ask the developer to measure it with a unit test that allocates N items and checks runtime.ReadMemStats. Guessing capacity without measuring leads to OOM or wasted memory.

Common Mistakes

  1. Forgetting WithJanitor() — without it, expired entries stay in memory until the algorithm evicts them. Always chain .WithJanitor() in the builder and defer cache.StopJanitor().
  2. Calling SetMissing() without missing cache config — panics at runtime. Enable WithMissingCache(algorithm, capacity) or WithMissingSharedCache() in the builder first.
  3. WithoutLocking() + WithJanitor() — mutually exclusive, panics. WithoutLocking() is only safe for single-goroutine access without background cleanup.
  4. Oversized cache — a cache holding everything is a map with overhead. Size to your working set (typically 10-20% of total data). Monitor hit rate to validate.
  5. Ignoring loader errorsGet() returns (zero, false, err) on loader failure. Always check err, not just found.

Best Practices

  1. Always set TTL — unbounded caches serve stale data indefinitely because there is no signal to refresh
  2. Use WithJitter(lambda, upperBound) to spread expirations — without jitter, items created together expire together, causing thundering herd on the loader
  3. Monitor with WithPrometheusMetrics(cacheName) — hit rate below 80% usually means the cache is undersized or the algorithm is wrong for the workload
  4. Use WithCopyOnRead(fn) / WithCopyOnWrite(fn) for mutable values — without copies, callers mutate cached objects and corrupt shared state

For advanced patterns (revalidation, sharding, missing cache, monitoring setup), see Production Patterns.

For the complete API surface, see API Reference.

If you encounter a bug or unexpected behavior in samber/hot, open an issue at https://github.com/samber/hot/issues.

Cross-References

  • → See samber/cc-skills-golang@golang-performance skill for general caching strategy and when to use in-memory cache vs Redis vs CDN
  • → See samber/cc-skills-golang@golang-observability skill for Prometheus metrics integration and monitoring
  • → See samber/cc-skills-golang@golang-database skill for database query patterns that pair with cache loaders
  • → See samber/cc-skills@promql-cli skill for querying Prometheus cache metrics via CLI

Mehr Skills von samber

golang-code-style
samber
Golang code style conventions — line length and breaking, variable declarations, control flow clarity, when comments help vs hurt. Use when writing or reviewing Go code, asking about style or clarity, or establishing project coding standards. Not for naming conventions (→ See `samber/cc-skills-golang@golang-naming` skill), linter configuration (→ See `samber/cc-skills-golang@golang-lint` skill), or doc comments (→ See `samber/cc-skills-golang@golang-documentation` skill).
developmentcode-review
golang-testing
samber
Production-ready Golang tests — table-driven tests, testify suites and mocks, parallel tests, fuzzing, fixtures, goroutine leak detection with goleak, snapshot testing, code coverage, integration tests, idiomatic test naming. Use when writing or reviewing Go tests, choosing a testing approach, setting up Go test CI, or debugging flaky/slow tests. For testify-specific APIs see `samber/cc-skills-golang@golang-stretchr-testify`; for measurement methodology see...
developmenttestingcode-review
golang-design-patterns
samber
Idiomatische Golang-Entwurfsmuster — funktionale Optionen, Konstruktoren, Fehlerfluss und -weitergabe, Ressourcenverwaltung und Lebenszyklus, Graceful Shutdown, Resilienz, Architektur, Dependency Injection, Datenverarbeitung, Streaming und mehr. Anwenden, wenn explizit zwischen Architekturmustern gewählt wird, funktionale Optionen implementiert werden, Konstruktor-APIs entworfen werden, Graceful Shutdown eingerichtet wird, Resilienzmuster angewendet werden oder gefragt wird, welches idiomatische Go-Muster zu einem spezifischen Problem passt.
developmentdesigncode-review
golang-error-handling
samber
Idiomatic Golang error handling — creation, wrapping with %w, errors.Is/As, errors.Join, custom error types, sentinel errors, panic/recover, the single handling rule, structured logging with slog, HTTP request logging middleware, and samber/oops for production errors. Built to make logs usable at scale with log aggregation 3rd-party tools. Apply when creating, wrapping, inspecting, or logging errors in Go code. For samber/oops specifics → See `samber/cc-skills-golang@golang-samber-oops`...
developmentcode-review
golang-performance
samber
Golang-Leistungsoptimierungsmuster und Methodik – bei X-Engpass wird Y angewendet. Behandelt Allokationsreduzierung, CPU-Effizienz, Speicherlayout, GC-Tuning, Pooling, Caching und Hot-Path-Optimierung. Verwenden, wenn Profiling oder Benchmarks einen Engpass identifiziert haben und das richtige Optimierungsmuster zur Behebung benötigt wird. Auch verwenden bei der Durchführung von Performance-Code-Reviews, um Verbesserungen oder Benchmarks vorzuschlagen, die helfen könnten, schnelle Leistungssteigerungen zu identifizieren. Nicht für Messmethodik (→...
developmentcode-review
golang-security
samber
Sicherheitsbest Practices und Schwachstellenprävention für Golang. Behandelt Injection (SQL, Command, XSS), Kryptografie, Dateisystemsicherheit, Netzwerksicherheit, Cookies, Secrets-Management, Speichersicherheit und Logging. Anwenden beim Schreiben, Überprüfen oder Auditieren von Go-Code auf Sicherheit oder bei der Arbeit an risikobehaftetem Code mit Krypto, I/O, Secrets-Management, Benutzereingaben oder Authentifizierung. Enthält Konfiguration von Sicherheitstools.
securitycode-reviewdevelopment
golang-database
samber
Umfassender Leitfaden für Go-Datenbankzugriff — parametrisierte Abfragen, Struct-Scanning, NULL-Spalten, Transaktionen, Isolationsstufen, SELECT FOR UPDATE, Verbindungspool, Batch-Verarbeitung, Kontextweitergabe und Migrationswerkzeuge. Verwenden beim Schreiben, Überprüfen oder Debuggen von Golang-Code, der mit PostgreSQL, MariaDB, MySQL oder SQLite interagiert; für Datenbanktests; oder bei Fragen zu database/sql, sqlx oder pgx. Erzeugt KEINE Datenbankschemata oder Migrations-SQL.
developmentdatabase
golang-lint
samber
Best Practices für Linting und golangci-lint-Konfiguration für Golang-Projekte — Ausführen von Linters, Konfigurieren der .golangci.yml, Unterdrücken von Warnungen mit nolint-Direktiven, Interpretieren von Lint-Ausgaben und Auswählen von Linters. Verwenden bei der Konfiguration von golangci-lint, bei Fragen zu Lint-Warnungen oder nolint-Unterdrückungen, beim Einrichten von Code-Qualitätswerkzeugen oder bei der Auswahl von Linters. Auch verwenden, wenn der Benutzer golangci-lint, go vet, staticcheck oder revive erwähnt.
developmentcode-reviewtesting